A stochastic, or random, process describes the correlation or evolution of random events. It is used to model stock market fluctuations and electronic/audio-visual/biological signals. Among the most well-known stochastic processes are random walks and Brownian motion.

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The impact of jump on the returns of portfolio and asset pricing

There exsits jumps in financial market. What will be the impact of jump on the returns of portfolio and asset pricing? Please explain it both academically and plainly. If you can give some excellent ...
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1answer
14 views

A theorem about the Poisson Point process.

In the proof of the Levy-Khintchine theorem, I saw a theorem about the Poisson point process. The theorem states that if $\Pi$ is a poission point process on $S$ with intensity measure $\mu.$ Let ...
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16 views

Help me solve the invariant measure of $Q$

My $Q$ matrix is given by: \begin{bmatrix} -\lambda &0 &\lambda &0 &0 &... \\ \mu&-(\lambda+\mu) &0 &\lambda &0 &... \\ 0&\mu ...
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1answer
40 views

Stochastic process, Gaussian, with zero mean is a Wiener process

Let $(\Omega, \mathcal F , \mathbb P)$ be a probability space and let $\mathcal F = \{\mathcal F_t\}_{t\ge} $ a filtration. Let $W=\{W_t;t ≥ 0\}$ be a stochastic process adapted to $\mathcal F$. ...
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29 views

Stopping times and $\sigma$-algebras

We have the usual $(\Omega, \mathcal{F}, P)$ stochastic basis. Let $\rho, \tau: \Omega \to T \cup \{+\infty\}$ be stopping times and $\mathcal{F}_{\rho}, \mathcal{F}_{\tau}$ their respective ...
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41 views

Chaos in finite field

Let's think about some finite field $\mathbb{F}$. Is it possible to construct a map $x[n+1] = \mathcal{P}(x[n], x[n-1],...,x[n-k]), \ \ \ \forall x\in\mathbb{F} $ where $\mathcal{P}$ - ...
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27 views

Prove $\mathbb{E}[X_t | \mathcal{F}_s] = \mathbb{E}[X_t | \sigma(\mathcal{F}_s \cup \mathcal{G}_s)] $

We want to prove that if $X_t$ is an $\mathcal{F}_t$ - martingale: $\mathbb{E}[X_t | \mathcal{F}_s] = X_s$ for $s<t$, then it's also a $\sigma(\mathcal{F}_s \cup \mathcal{G}_s)$- martingale. ...
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13 views

Levy process absolute moment

For a Levy process $(X_t)_{t\geq 0}$, we have $\mathbb{E}[X_t]=t\mathbb{E}[X_t^1]$ and $\text{Var}(X_t)=t\text{Var}(X_t^1)$. Does the same hold for the first absolute moment, i.e. does ...
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30 views

Construction binary tree

First let $\mu$ be the induced distribution of the random variable $X$ on $(\mathbb{R},\mathcal{B})$ and denote $EX=m$. We also define for all $A\in G_{n+1}$ and $\omega\in X^{-1}(A)$ ...
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1answer
26 views

Examples of convergence of random variables

First, let's recall the definitions of 4 different types of convergence:almost surely, in $r$th mean, in probability and in distribution: $X_n\xrightarrow{a.s.}X$ if $\{\omega \in ...
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10 views

Analytic tools in the theory of Galton-Watson processes

The questions basically aims at discussing the relative power of using probability generating functions, moment generating functions and characteristic functions as an example for ...
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1answer
36 views

Continuous Non negative martingale converging to 0

Is there any (non trivial) continuous non negative martingale which converges to 0?
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27 views

Generalization of Doob Dynkin for Stochastic processes

Let $\{X_t\}_{t\geq 0}$ be continuous time stochastic process and $\{\mathcal{F}_t^X\}_{t \geq 0}$ be the filtration generated by it. If the process $Y$ is $\{\mathcal{F}_t^X\}_{t \geq 0}$ adapted, is ...
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28 views

lower bound of expectation of stochastic differential equation

I'm looking for a lower bound on the expected value of a smooth, non-negative, increasing function $\mathbb{E}f(X_t)$, $f(0)=0$ of the solution to a stochastic differential equation $X_t = x + ...
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17 views

Show $B_{t}^{2}$ is a weak solution of a stochastic differential equation. [closed]

Let $B_{T}$ be a Brownian motion in $\mathbb{R}$. Show that $X_{t} = B_{t}^{2}$ is a weak solution of the stochastic differential equation $dX_{t} = dt + 2\sqrt{|X_{t}|}d\tilde{B_{t}}$ where ...
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40 views

Exponential Levy process

We assume that the stochastic process L is a Levy process with the predictable characteristics triplet $(b,c,\nu)$. Which integrability conditions we should assume for the new stochastic process ...
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63 views

Optimal probability measure

Let $A$ be a finite set and let $\Bbb P$ be a probability measure on $A^{\Bbb N_0}$. Further, let $x_i:A^{\Bbb N_0}\to A$ be projection maps, so that $(x_i)_{i=0}^\infty$ can be treated as a ...
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1answer
39 views

How is Brownian motion predictable?

Could someone please explain how Brownian motion is predictable? My understanding is that a predictable process is one that depends on information up to time t say but not t itself, therefore W_t has ...
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2answers
51 views

Moment generating function of a stochastic integral

Let $(B_t)_{t\geq 0}$ be a Brownian motion and $f(t)$ a square integrable deterministic function. Then: $$ \mathbb{E}\left[e^{\int_0^tf(s) \, dB_s}\right] = \mathbb{E}\left[e^{\frac{1}{2}\int_0^t ...
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10 views

Distribution of partial sums of a $L^2$-transformed Gaussian Process

Our assumptions are: $X_t$ is a stationary sequence of standard normal random variables such that $\gamma _X (k)\sim L_{\gamma}(k)k^{2d-1}$ with $d \in (0,1/2)$, where $L_\gamma (k)$ is a slowly ...
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1answer
21 views

Proving weak existence of CIR process

Consider the following SDE $$ X_t = x + \int_0^t \theta (\mu -X_s) ds + \int_0^t\kappa \sqrt{|X_s|} dW_s $$ where W is a brownian motion. I'm trying to show a weak solution exists, does anyone have ...
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1answer
45 views

finding the probability density function of $ dY_t = - Y_t X_t dW_t$

Could someone point me to where I can learn how to derive the stationary distribution for the martingale $Y_t$ which itself has stochastic volatility drive by $X_t$: \begin{align} dY_t &= - Y_t\ ...
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1answer
20 views

Can an absorbing CTMC be reversible?

Can a CTMC with an absorbing state be reversible? I guess not, as the product of rates through any loop cannot be equal when the loop involves the absorbing state (Kolmogorov criterion). Is my ...
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1answer
34 views

The weighted distribution function for combination of two variables

For example, we have two random variables $a$ and $b$. And they have cumulative distribution function $F(x)$ and $H(x)$. We have number $0 < p < 1$. Suppose, some machine get this random ...
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35 views

Finding stationary Distribution

I need to know how to find the stationary distribution for this matrix: $$ Q= \begin{bmatrix} -2 & 2 & 0 & 0 \\ 1 & -2 & 1 & 0 \\ 0 & 1 & -2 &1\\ 0 & 0 ...
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1answer
66 views

Canonical Markov Process

Let $X$ be a canonical, right-continuous Markov process with values in a Polish state space $E$, equipped with Borel-$\sigma$-algebra $\mathcal{E}$ and we assume that $t\rightarrow E_{X_{t}}f(X_{s})$ ...
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22 views

Girsanov kernel moments

Let $Z_t=e^{\int_0^tq_tdB_t-\frac{1}{2}\int_0^tq^2_tdt}$, where $(q_t)_{t\geq0}$ is a predictable process, and $(B_t)_{t\geq0}$ a $\mathbb{P}$-Brownian motion. In particular, Novikov's condition ...
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20 views

Linear birth death process extinction probabilities

Given a birth and death process $X$ with $\lambda_n=n\lambda$ and $\mu_n=n\mu$ for $n\ge0$, and letting $P_n(t)=\Pr\{X(t)=n\}$, I need to prove that $P_0'(t)=\lambda P_0(t)^2-(\lambda+\mu)P_0(t)+\mu$. ...
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1answer
36 views

Continuous time Stochastic Process stopping time measurability

Let $\{X_t,\mathcal{F}_t;0\leq t < \infty\}$ be continuous time stochastic processes and $T$ be $\{\mathcal{F}_t\}_{0\leq t < \infty}$ stopping time. How to prove $X_T$ is $\mathcal{F}_T$ ...
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13 views

Solving the following SDE: dS=S(μdt+σe^(-t)dZ) from the BS-Model

I am trying to do an exercise where I have to solve the following stochastic Differential Equation, which is described by a modification of the Black-Scholes Model. It looks like the folllowing: ...
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1answer
26 views

Brownian motion and convergence in probability of step functions

For positive $a$ and Brownian motion $B$, I want to compute $\int_0^a g(s)dB_s$ where $g \in L^2$ and $g$ is a step function if there exists partition $0=t_0 < ... < t_n = a$ such that $g = ...
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13 views

fGn asymptotic claim correlation

Let $(X_{i})$ be the fractional Gaussian noise for $H\in(0,1)$. Since it is stationary $\mathbb{E}(X_{i}X_{j})$ only depends on $|j-i|$. How can I prove for $\rho(|j-i|)=\mathbb{E}(X_{i}X_{j})$ that ...
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1answer
39 views

Moment generating function of two non-independent Brownian increments

I am writing to ask if it is possible to get closed-form solution to the expression to the following expression: $\mathbb{E}[e^{\sigma^2(W_t-W_u)(W_s-W_u)}]$ where $W$ is a standard Brownian motion, ...
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21 views

Random process x(t) =C and C is uniform over [-2,3]

I need reassurance that if I do a a few sample realizations of this random process they are all going to look the same. They are going to be an horizontal line with x(t) constant equal to 1/5. I see ...
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55 views

Graduate research project in stochastic programming . [closed]

I don't know is this a good question or is this place is right to post this like question or not , but I need keen help, so I'm posting it. I'm a graduate student & in this semester I've ...
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1answer
22 views

Integrating a Poisson Process with respect to itself

I am just learning about Poisson Processes and I feel somewhat comfortable with the basic concepts, but I am a little stuck with the following problem: Let $N(t)$ be a Poisson process with intensity ...
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57 views

$dX_t=1_{X_t\not=0} dW_t$

Given The SDE : $dX_t=1_{X_t\not=0} dW_t$ with $ X_{0}=\xi $ how can I construct two obvious strong solutions to prove that SDE has non pathwise uniquenss Indeed Consider the stopping time $$ ...
3
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0answers
26 views

Orthogonal projections for minimization problem

I have trouble to understand the existence of a minimization problem in a Hilbert space. Let $(\Omega,\mathcal{F}_T,P)$ be a filtred probability space with filtration $(\mathcal{F}_t),0\le t\le T$. We ...
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31 views

Transforming a Joint PDF [duplicate]

I have a pdf $f(X,Y)=(\frac{1}{4})^2e^{−\frac{(|x|+|y|)}{2}}$. My goal is to find the joint PDF $f(W,Z)$ taking in consideration this $W=XY$ and $Z=Y/X$. I know I can not use Jacobian because is a ...
2
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40 views

Pure Birth Process

I encountered this problem while trying out various practice problems to study for my stochastic processes test. (It's not homework, it's just a practice problem). Consider a pure birth process on ...
2
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0answers
51 views

Progressive measurability of stopped process

Let $(\mathcal{F}_t)_{t\in \mathbb{R}_+}$ be a filtration and let $X$ be a stochastic process progressively measurable with respect to $(\mathcal{F}_t)_{t\in \mathbb{R}_+}$. Let $T$ be a stopping time ...
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35 views

Product of predictable process and a characteristic function is integrable

Suppose the time parameter $t\in[0,T]$, $S$ is a Semimartingale and $\theta_t$ a predictable $S$-integrable process such that $$\int_0^T\theta_u dS_u\ge -a$$ for a $a>0$. Furthermore ...
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68 views

Standard Brownian Motion

Let $\{X_t,t\ge 0\}$ be a standard Brownian motion. Compute the density of $X_t$ conditioned by $X_{t_1}$ and $X_{t_2}$ assuming that $t_1 <t<t_2$. Can anyone give me some hint to start the ...
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14 views

Submartingale bounds

Let $X_1,X_2,\ldots$ be a submartingale with respect to the filtration generated by it. Is it possible to get any bounds for the probability $\mathbb{P}(X_2 < 0\mid X_1 >0)$ ?
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1answer
51 views

Rewriting Markov process

Let $X$ be a Markov proces with state space $(E,\mathcal{E})$with initial distribution $\nu$ and transition function $P_{t}$, so $$E_{\nu}(f(X_{t+s})\mid\mathcal{F}_{s})=P_{t}f(X_{s})$$ Suppose that ...
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1answer
101 views

Show that $M$ is a martingale

Let $B$ be typical Brownian motion with $\mu >0$ and $x \in \mathbb{R}$. $X(t):=x+B(t)+\mu t$, for each $t\geqslant 0$, Brownian motion with velocity $\mu$ that starts at $x$. For $r \in ...
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1answer
80 views

A Boundary crossing result for discrete brownian bridge

Let $S_n$ be a random walk with gaussian increments with $S_0=0$, i.e. $S_n-S_{n-1}\sim N(0,1), n\geq 1$. Fix $a>0,b\in \mathbb{R}$ and $c<a+bn$. Define the new process $$ ...
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58 views

Inadmissibility of Simpson's rule

Let $B_t$, $t\ge0$ be a standard Brownian motion and suppose $0<x_1<x_2<\cdots<x_n<1$. Then the conditional expectation $$ \mathbb E\left(\int_0^1 B_t\,dt \,\middle\vert\, B_0, ...
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23 views

White Noise Process

Suppose $w_{t}$ is a normal white noise process. Is $z_{t} = w_{t}*w_{t-1}$ stationary? Is my reasoning correct? $Ew_{t}w_{t-1}w_{t+h}w_{t+h-1} = 0 $ for all $h$ implying that the series is ...
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21 views

Stochastic Processes, Doob's Inequality

please confirm if the following is correct. Let $A = \{V_\tau > \epsilon\}$ and $\alpha = \min(\alpha_1,\tau)$, where $\alpha_1 = \min\{t\geq 0: X_t\geq \epsilon\}$ (So intuitively, $\alpha$ ...

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